Copenhagen, Denmark
Onsite/Online

ESTRO 2022

Session Item

Monday
May 09
14:15 - 15:15
Mini-Oral Theatre 1
21: Radiomics & modelling
Eirik Malinen, Norway;
Laura Cella, Italy
3390
Mini-Oral
Physics
Assessing the generalisability of radiomics features for predicting sticky saliva and xerostomia
Thomas Berger, United Kingdom
MO-0876

Abstract

Assessing the generalisability of radiomics features for predicting sticky saliva and xerostomia
Authors:

Thomas Berger1, David J. Noble2,3, Leila E.A. Shelley1, Thomas McMullan1, Amy Bates3, Simon Thomas4, Linda J. Carruthers1, George Beckett5, Aileen Duffton6, Claire Paterson6, Raj Jena3, Duncan B. McLaren2, Neil G. Burnet7, William H. Nailon1,8

1Edinburgh Cancer Centre, Western General Hospital, Department of Oncology Physics, Edinburgh, United Kingdom; 2Edinburgh Cancer Centre, Western General Hospital, Department of Clinical Oncology, Edinburgh, United Kingdom; 3The University of Cambridge, Department of Oncology, Cambridge, United Kingdom; 4Cambridge University Hospitals NHS Foundation Trust, Department of Medical Physics and Clinical Engineering, Cambridge, United Kingdom; 5Bayes Centre, Edinburgh Parallel Computing Centre, Edinburgh, United Kingdom; 6Beatson West of Scotland Cancer Centre, Department of Oncology, Glasgow, United Kingdom; 7The Christie NHS Foundation Trust, ,, Manchester, United Kingdom; 8the University of Edinburgh, School of Engineering, Edinburgh, United Kingdom

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Purpose or Objective

Few studies reporting radiomics-based models for prediction of clinical outcomes are externally validated and fewer are replicated. While core to the scientific approach, reproducibility of experimental results, is often challenging for such studies because of the complexity of the methods.

Recently, on a cohort of patients with head and neck cancer (HNC), van Dijk et al identified radiomics features that improve prediction of moderate-to-severe sticky saliva (SS12m) and xerostomia (Xer12m) at 12 months after radiotherapy, compared to models only based on dose and clinical parameters. In this replication study, we assessed the generalisability of these findings using a different cohort of HNC patients.

Material and Methods

The methods described by van Dijk et al were applied to a cohort of 109 HNC patients treated with 50-70Gy in 20-35fx using TomoTherapy. Xerostomia and sticky saliva scores were collected at baseline and 12 months after RT (EORTC QLQ-HN35). For each patient, a planning CT (Toshiba Aquilion/LB) was acquired and parotid and submandibular glands (SMG) contoured. Imaging features identified by van Dijk et al as associated with the clinical outcomes of interest were calculated on each slice of the contoured structure on planning CTs. Specifically, van Dijk et al found Short Run Emphasis (SRE) and maximum CT intensity (maxHU) to improve prediction of Xer12m and SS12m respectively, compared to models solely using baseline toxicity and mean dose to the salivary glands. We evaluated, on our cohort, the predictive performance of the variables identified by van Dijk et al. However, inherent differences were present between the two approaches (Table 1). In an attempt to determine the impact these differences had on the performance of the models, tests were run on subgroups of patients with varying proportions having: 1) intact salivary glands, 2) excluded CT slices with dental implants, and 3) consistent fractionation schedules.


Results

None of the univariate associations between radiomic features identified by van Dijk et al with the outcome of interest could be replicated on our cohort (Table 2). The addition of SRE to the standard model did not improve Xer12m prediction on any of the subgroups of patients tested. For patients with both SMG intact, the addition of the feature maxHU was found to improve the AUC from 0.53 to 0.66.


Conclusion

While none of univariate associations identified by van Dijk et al as being statistically significant could be replicated, the addition of maxHU improved SS12m prediction on patients with both SMG intact. These variations, and the limited generalisability of the findings, may be explained by the number of differences in the imaging characteristics of the two studies and subsequent methodological implementation. This highlights the importance of external validation as well as high quality reporting guidelines and standardisation protocols to ensure generalisability, replication and ultimately clinical implementation.